Arquitecto/A Ia / Machine Learning
hace 1 día
Tarragona
Location: Spain (Full remote from Spain) Start Date: ASAP Duration: 12 months (extendable) Position Overview We are looking for an MLOps / ML Engineer to manage the full lifecycle of Machine Learning models within an advanced document‑processing platform. The role focuses on deploying, distributing, and retraining Computer Vision models used for automated document analysis, OCR, and intelligent entity extraction. This person will work within a multidisciplinary team responsible for developing, improving, and operating a scalable document‑processing solution. Unlike a pure DevOps‑oriented MLOps role, this position is more hands‑on in ML development, model optimisation, and fine‑tuning, with a moderate MLOps component focused on pipelines, deployment, and automation. Key Responsibilities Manage the end‑to‑end lifecycle of Computer Vision and OCR‑based ML models (deployment, optimisation, fine‑tuning, retraining). Operate and improve data and ML pipelines using Airflow and MLflow. Deploy and maintain ML components within Databricks environments. Implement and maintain CI/CD pipelines for ML modules. Use Terraform or Ansible for IaC automation and environment provisioning. Work closely with Data Scientists and Software Engineers to ensure reliable, scalable delivery of document‑processing models. Contribute to continuous improvement of the platform’s AI capabilities. Required Skills Strong experience in Python and ML frameworks such as PyTorch or TensorFlow. Experience managing data pipelines and ML pipelines (Airflow, MLflow). Hands‑on experience deploying AI modules in Databricks . Exposure to IaC tools such as Terraform or Ansible. Experience designing and maintaining CI/CD pipelines. Background in Machine Learning development, model fine‑tuning, and optimisation. Spanish Mandatory Nice to Have Experience with OCR, Computer Vision, or document‑processing models. Familiarity with scalable ML systems or automated retraining processes. Experience in environments requiring both ML engineering and MLOps competencies Apply Here MACHINE LEARNING ENGINEER / DATA ENGINEER MACHINE LEARNING ENGINEER / DATA ENGINEER At Tendam, we are expanding our Data & Analytics team to tackle exciting challenges in the fashion retail industry. We’re looking for a Machine Learning Engineer who will bridge the gap between Data Scientists and Data Engineers, accelerate the ML project lifecycle, and maximize the use of our cloud infrastructure. What will you do? INSUD PHARMA operates across the entire pharmaceutical value chain, providing specialized knowledge and experience in scientific research, development, manufacturing, sales, and marketing of a wide range of active pharmaceutical ingredients (API), finished dosage forms (FDF), and branded pharmaceutical products, adding value to human and animal health. The activities of INSUD PHARMA are organized into three synergistic business areas: Industrial (Chemo), Branded (Exeltis), and Biotech (mAbxience), with over 9,000 professionals in more than 50 countries, 20 state‑of‑the‑art facilities, 15 specialized R&D centers, 12 commercial offices, and more than 35 pharmaceutical subsidiaries, serving 1,150 customers in 96 countries worldwide. INSUD PHARMA believes in innovation and sustainable development. Ready to be a #Challenger? What are we looking for? We are the Data Science team within AI Labs, the applied AI department at Insud Pharma. We are a team of 30 professionals (AI Engineers, Data Scientists, DevOps Engineers, and Product Managers) working across the full breadth of the company, building products, models, and analytical solutions that directly inform and shape decision‑making. We are looking for an Applied Data Scientist with strong technical foundations who is eager to work across diverse and complex problem domains (R&D, drug manufacturing process optimization, clinical trials, and beyond). You will model problems from the ground up—defining the right framing, selecting appropriate methodologies, and owning solutions through rigorous development to full deployment. We are seeking someone curious enough to tackle varied challenges (graph theory, embeddings, neural network forecasting models, causality, Bayesian optimization), rigorous enough to justify every technical and methodological decision, and independent enough to deliver end‑to‑end impact while taking full ownership of their work. How the team works: AI Labs operates with a startup mindset within Insud Pharma. The department is young, and the culture reflects that: flat, collaborative, and fast‑moving. Beyond the Data Science team, you will work alongside AI Engineers, DevOps Engineers, and Product Managers who are equally committed to delivering high‑quality work. We hold regular demo days where teams present their work, as well as whiteboard sessions where we tackle problems together. The cross‑disciplinary dynamic is genuinely strong. The office is located in central Madrid (Chamberí, near Eloy Gonzalo), well connected and situated in a vibrant part of the city. The challenge! Collaborate with small, cross‑functional teams. Each project is run by a small group — typically a Product Manager, a Data Scientist, an Engineer, and key stakeholders. Iteration is fast, feedback loops are short, and your contribution is visible from day one. Conduct exploratory data analysis to uncover patterns and insights in large datasets. Design, implement, and validate machine learning models and statistical methodologies to solve high‑impact, real‑world business problems. Translate technical findings into clear narratives, visualizations, and decision frameworks for both technical and non‑technical stakeholders, enabling informed and data‑driven decisions. What do you need? Strong understanding of statistics, machine learning, and data mining techniques. Expertise in Python programming, including proficiency with data science libraries (e.G., NumPy, Pandas, Scikit‑learn, TensorFlow…). Strong understanding of data preprocessing, feature engineering, and model evaluation techniques. Proven ability to translate complex technical concepts into clear, actionable insights for non‑technical audiences. Knowledge and experience in causal inference methodologies will be highly valued. Knowledge of deep learning architectures and natural language processing is beneficial. Familiarity with Large Language Models (LLMs) and their applications in business contexts is a plus. Experience with version control systems (e.G., Git) and collaborative development practices. Clean, maintainable code and familiarity with software engineering best practices. Familiarity with cloud platforms (e.G., AWS, Azure, Google Cloud) and their machine learning services. Experience with big data technologies (e.G., Spark, Hadoop) and SQL databases is a plus. Proficient in Spanish and English in written and verbal communication. ⏰ Flexible start time from Monday to Friday Permanent contract. If you are interested in this role, please reach out to me #J-18808-Ljbffr